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Main Authors: Jang, Seongbo, Lee, Seonghyeon, Yu, Hwanjo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.17377
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author Jang, Seongbo
Lee, Seonghyeon
Yu, Hwanjo
author_facet Jang, Seongbo
Lee, Seonghyeon
Yu, Hwanjo
contents As language models are often deployed as chatbot assistants, it becomes a virtue for models to engage in conversations in a user's first language. While these models are trained on a wide range of languages, a comprehensive evaluation of their proficiency in low-resource languages such as Korean has been lacking. In this work, we introduce KoDialogBench, a benchmark designed to assess language models' conversational capabilities in Korean. To this end, we collect native Korean dialogues on daily topics from public sources, or translate dialogues from other languages. We then structure these conversations into diverse test datasets, spanning from dialogue comprehension to response selection tasks. Leveraging the proposed benchmark, we conduct extensive evaluations and analyses of various language models to measure a foundational understanding of Korean dialogues. Experimental results indicate that there exists significant room for improvement in models' conversation skills. Furthermore, our in-depth comparisons across different language models highlight the effectiveness of recent training techniques in enhancing conversational proficiency. We anticipate that KoDialogBench will promote the progress towards conversation-aware Korean language models.
format Preprint
id arxiv_https___arxiv_org_abs_2402_17377
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle KoDialogBench: Evaluating Conversational Understanding of Language Models with Korean Dialogue Benchmark
Jang, Seongbo
Lee, Seonghyeon
Yu, Hwanjo
Computation and Language
As language models are often deployed as chatbot assistants, it becomes a virtue for models to engage in conversations in a user's first language. While these models are trained on a wide range of languages, a comprehensive evaluation of their proficiency in low-resource languages such as Korean has been lacking. In this work, we introduce KoDialogBench, a benchmark designed to assess language models' conversational capabilities in Korean. To this end, we collect native Korean dialogues on daily topics from public sources, or translate dialogues from other languages. We then structure these conversations into diverse test datasets, spanning from dialogue comprehension to response selection tasks. Leveraging the proposed benchmark, we conduct extensive evaluations and analyses of various language models to measure a foundational understanding of Korean dialogues. Experimental results indicate that there exists significant room for improvement in models' conversation skills. Furthermore, our in-depth comparisons across different language models highlight the effectiveness of recent training techniques in enhancing conversational proficiency. We anticipate that KoDialogBench will promote the progress towards conversation-aware Korean language models.
title KoDialogBench: Evaluating Conversational Understanding of Language Models with Korean Dialogue Benchmark
topic Computation and Language
url https://arxiv.org/abs/2402.17377